Department of Radiation Oncology, University of California, Los Angeles, CA, USA.
Med Phys. 2018 Feb;45(2):666-677. doi: 10.1002/mp.12697. Epub 2017 Dec 17.
Lung diseases are commonly associated with changes in lung tissue's biomechanical properties. Functional imaging techniques, such as elastography, have shown great promise in measuring tissue's biomechanical properties, which could expand the utility and effectiveness of radiotherapy treatment planning. We present a novel methodology for characterizing a key biomechanical property, parenchymal elasticity, derived solely from 4DCT datasets.
Specifically, end-inhalation and end-exhalation breathing phases of the 4DCT datasets were deformably registered and the resulting displacement maps were considered to be ground-truth. A mid-exhalation image was also prepared for verification purposes. A GPU-based biomechanical model was then generated from the patient end-exhalation dataset and used as a forward model to iteratively solve for the elasticity distribution. Displacements at the surface of the lungs were applied as boundary constraints for the model-guided tissue elastography, while the inner voxels were allowed to deform according to the linear elastic forces within the biomechanical model. A convergence criteria of 10% maximum deformation was employed for the iterative process.
The lung tissue elasticity estimation was documented for a set of 15 4DCT patient datasets. Maximum lung deformations were observed to be between 6 and 31 mm. Our results showed that, on average, 89.91 ± 4.85% convergence was observed. A validation study consisting of mid-exhalation breathing phases illustrated an accuracy of 87.13 ± 10.62%. Structural similarity, normalized cross-correlation, and mutual information were used to quantify the degree of similarity between the following image pairs: (a) the model-generated end-exhalation and ground-truth end-exhalation, and (b) model-generated mid-exhalation images and ground-truth mid-exhalation.
Overall, the results suggest that the lung elasticity can be measured with approximately 90% convergence using routinely acquired clinical 4DCT scans, indicating the potential for a lung elastography implementation within the radiotherapy clinical workflow. The regional lung elasticity found here can lead to improved tissue sparing radiotherapy treatment plans, and more precise monitoring of treatment response.
肺部疾病通常与肺部组织生物力学特性的变化有关。功能成像技术,如弹性成像,在测量组织生物力学特性方面显示出巨大的潜力,这可能扩大放射治疗计划的效用和有效性。我们提出了一种从 4DCT 数据集仅提取关键生物力学特性(实质弹性)的新方法。
具体来说,4DCT 数据集的吸气末和呼气末呼吸阶段通过可变形配准,将得到的位移图作为地面真实值。还准备了一个呼气中期图像用于验证目的。然后,从患者呼气末数据集生成基于 GPU 的生物力学模型,并将其用作正向模型来迭代求解弹性分布。将肺部表面的位移作为模型引导的组织弹性的边界约束,而内部体素则根据生物力学模型中的线性弹性力进行变形。迭代过程采用 10%最大变形的收敛标准。
对 15 组 4DCT 患者数据集进行了肺组织弹性估计。观察到最大肺变形在 6 到 31 毫米之间。我们的结果表明,平均观察到 89.91 ± 4.85%的收敛。由呼气中期呼吸阶段组成的验证研究表明,准确性为 87.13 ± 10.62%。结构相似性、归一化互相关和互信息用于量化以下图像对之间的相似程度:(a) 模型生成的呼气末和地面真实呼气末,以及 (b) 模型生成的呼气中期图像和地面真实呼气中期。
总体而言,结果表明,使用常规获取的临床 4DCT 扫描可以以约 90%的收敛度测量肺弹性,表明在放射治疗临床工作流程中实现肺弹性成像的潜力。这里发现的区域性肺弹性可以导致改善的组织保留放射治疗计划,以及更精确的治疗反应监测。